I'm struggling to do time series decomposition with the `statsmodels`

's `tsa.seasonal_decompose`

function, which calls the `convolution_filter`

function and raises the following TypeError:

TypeError: 'numpy.float64' object cannot be interpreted as an index

For instance, when I run the code below (provided by the StatsModels website):

```
import statsmodels.api as sm
dta = sm.datasets.co2.load_pandas().data
# deal with missing values. see issue
dta.co2.interpolate(inplace=True)
res = sm.tsa.seasonal_decompose(dta.co2)
res.plot()
```

I get the following stack trace:

```
--------------------------------------------------------------------------- TypeError Traceback (most recent call last) <ipython-input-11-b43f2eda010e> in <module>()
5 dta.co2.interpolate(inplace=True)
6
----> 7 res = sm.tsa.seasonal_decompose(dta.co2)
8 res.plot()
.../statsmodels/tsa/seasonal.pyc in seasonal_decompose(x, model, filt, freq)
86 filt = np.repeat(1./freq, freq)
87
---> 88 trend = convolution_filter(x, filt)
89
90 # nan pad for conformability - convolve doesn't do it
.../statsmodels/tsa/filters/filtertools.pyc in convolution_filter(x, filt, nsides)
301 result[:, i] = signal.convolve(x[:, i], np.r_[0, filt[:, i]],
302 mode='valid')
--> 303 result = _pad_nans(result, trim_head, trim_tail)
304 if _pandas_wrapper:
305 return _pandas_wrapper(result)
.../statsmodels/tsa/filters/filtertools.pyc in _pad_nans(x, head, tail)
26 return x
27 elif head and tail:
---> 28 return np.r_[[np.nan] * head, x, [np.nan] * tail]
29 elif tail is None:
30 return np.r_[[np.nan] * head, x]
TypeError: 'numpy.float64' object cannot be interpreted as an index
```

I've tried with a few other examples and faced the same problem on the Numpy's `_pad_nans`

function. I'm using Numpy 1.12.0 and StatsModels 0.6.1.

Does anyone know what's happening?